Automatic classification of EEG signals via deep learning

Tao Wu, X. Kong, Yiwen Wang, Xue Yang, Jingxuan Liu, Jun Qi
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引用次数: 1

Abstract

Electroencephalogram (EEG) is widely used to diagnose many neurological and psychiatric brain disorders. The correct interpretation of EEG data is critical to avoid misdiagnosis. However, the analysis of EEG data requires trained specialists and may vary from expert to expert. Meanwhile, it can be challenging and time-consuming to assess the EEG data since these signals may last several hours or days. Therefore, rapid and accurate classification of EEG data may be a key step towards interpreting EEG records. In this study, a novel deep learning model with an end-to-end structure is proposed to distinguish normal and abnormal EEG signals automatically. For this purpose, we investigate the possibility of combining the core ideas of inception and residual architectures into a hybrid model to improve classification performance. We evaluated the proposed method through extensive experiments on a real-world dataset, and it shows feasibility and effectiveness. Compared to previous studies on the same data, our method outperforms other existing EEG signal methods. Thus, the proposed method can aid clinicians to automatically detect brain activity.
基于深度学习的脑电信号自动分类
脑电图(EEG)被广泛用于诊断许多神经和精神脑疾病。正确解读脑电图数据是避免误诊的关键。然而,脑电图数据的分析需要训练有素的专家,并且可能因专家而异。同时,由于这些信号可能持续数小时或数天,因此评估脑电图数据可能具有挑战性且耗时。因此,快速准确的脑电数据分类可能是解释脑电记录的关键步骤。本文提出了一种基于端到端结构的深度学习模型,用于自动区分正常和异常脑电信号。为此,我们研究了将初始架构和剩余架构的核心思想结合到混合模型中以提高分类性能的可能性。我们通过在真实数据集上的大量实验对所提出的方法进行了评估,表明了该方法的可行性和有效性。与以往对相同数据的研究相比,我们的方法优于现有的其他脑电信号方法。因此,所提出的方法可以帮助临床医生自动检测大脑活动。
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